Why TensorFlow is called TensorFlow?

TensorFlow is deep neural network based programming language which uses Tensors in the graph which represents the data in the system.

TensorFlow is deep neural network based programming language which uses Tensors in the graph which represents the data in the system.

Why this programming language is called TensorFlow?

Google Brain team developed this programming language which is very popular
for designing deep neural networks and performing deep learning on the huge data
sets. As explained in the previous tutorial "What
is TensorFlow?" TensorFlow is open source programming language for machine
learning and deep learning application development. TensorFlow programming
langue uses computational graph which represents biological neural networks in
machine language although its it not intelligent like bio-logical neural
networks.

The TensorFlow graph consists of Tensors and the various mathematical
operations on these Tensors. Mathematical operations such as multiply, add,
divide etc.. are known as node.

In TensorFlow Tensors are simply the data in the network. It can be single
dimensional or multi-dimentional array in the system on to which various
mathematical operations are performed. Mathematical operations (node operation)
takes one or tensors and may generate one or more tensors.

TensorFlow is called TensorFlow because it handles the flow
(node/mathematical operation) of tensors (data). So, in TensorFlow we define the
computational graph with Tensors and mathematical operation (node) to create
system for machine learning and deep learning.

This graph is executed by TensorFlow runtime over cluster of server
consisting of CPU, GPU and TPU through TensorFlow session. TensorFlow
programming language is designed to run the calculation with efficiency and in
parallel over thousands of servers.

In future tutorials you will learn how to define TensorFlow graph and then
run through TensorFlow session.